TL;DR
This paper develops the first approximation algorithms for subdeterminant maximization under partition and regular matroid constraints, using novel nonconvex relaxations and an anti-concentration inequality for dependent variables.
Contribution
It introduces new formulations for subdeterminant maximization that enable approximation algorithms for matroid constraints, advancing beyond prior estimation methods.
Findings
First approximation algorithms for partition and regular matroids.
Novel nonconvex formulations reducing the problem to maximizing a function over probability simplices.
A new anti-concentration inequality for dependent random variables.
Abstract
Several fundamental problems that arise in optimization and computer science can be cast as follows: Given vectors and a constraint family , find a set that maximizes the squared volume of the simplex spanned by the vectors in . A motivating example is the data-summarization problem in machine learning where one is given a collection of vectors that represent data such as documents or images. The volume of a set of vectors is used as a measure of their diversity, and partition or matroid constraints over are imposed in order to ensure resource or fairness constraints. Recently, Nikolov and Singh presented a convex program and showed how it can be used to estimate the value of the most diverse set when corresponds to a partition matroid. This result was recently extended to regular matroids…
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Videos
Subdeterminant Maximization via Nonconvex Relaxations and Anti-concentration· youtube
